Structural robustness of networks with degree-degree correlations between second-nearest neighbors
We numerically investigate the robustness of networks with degree-degree correlations between nodes separated by distance $l=2$ in terms of shortest path length. The degree-degree correlation between the $l$-th nearest neighbors can be quantified by Pearson's correlation coefficient $r_l$ for t...
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Zusammenfassung: | We numerically investigate the robustness of networks with degree-degree
correlations between nodes separated by distance $l=2$ in terms of shortest
path length. The degree-degree correlation between the $l$-th nearest neighbors
can be quantified by Pearson's correlation coefficient $r_l$ for the degrees of
two nodes at distance $l$. We introduce $l$-th nearest-neighbor correlated
random networks ($l$-NNCRNs) that are degree-degree correlated at less than or
equal to the $l$-th nearest neighbor scale and maximally random at farther
scales. We generate $2$-NNCRNs with various $r_1$ and $r_2$ using two steps of
random edge rewiring based on the Metropolis-Hastings algorithm and compare
their robustness against failures of nodes and edges. As typical cases of
homogeneous and heterogeneous degree distributions, we adopted Poisson and
power law distributions. Our results show that the range of $r_2$ differs
depending on the degree distribution and the value of $r_1$. Moreover,
comparing $2$-NNCRNs sharing the same degree distribution and $r_1$, we
demonstrate that a higher $r_2$ makes a network more robust against random
node/edge failures as well as degree-based targeted attacks, regardless of
whether $r_1$ is positive or negative. |
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DOI: | 10.48550/arxiv.2412.02438 |